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Evaluating and forecasting banking crises through neural network models: An application for Turkish banking sector

机译:通过神经网络模型评估和预测银行业危机:土耳其银行业的应用

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The performance of neural networks in evaluating and forecasting banking crises have been examined in this paper. An artificial neural network model which works with the banking data belonging to the same date and another artificial neural network model which works with cross sectional banking data have been formed and tested. The optimal topologies of these models have been determined by Taguchi approach which is a design of experiments method. Both models can forecast the values of the output neurons consisting of Non-performing Loans/Total loans, Capital/Assets, Profits/Assets and Equity/Assets ratios by using 25 input neurons consisting of macroeconomic variables, the variables related to the external balanced financial system's structure, and time with very small errors. Consequently, it has been seen that artificial neural networks which are capable of producing successful solutions for semi-structural and non-structural problems, can be used effectively in evaluating and forecasting banking crises.
机译:本文研究了神经网络在评估和预测银行业危机中的性能。已经建立并测试了一个人工神经网络模型,该模型可以处理属于同一日期的银行数据,而另一个人工神经网络模型可以处理横截面的银行数据。这些模型的最佳拓扑已经通过Taguchi方法确定,这是一种实验方法的设计。两种模型都可以通过使用25个由宏观经济变量,与外部平衡金融相关的变量组成的输入神经元来预测由不良贷款/总贷款,资本/资产,利润/资产和权益/资产比率组成的输出神经元的值。系统的结构和时间误差很小。因此,可以看出,能够为半结构性和非结构性问题提供成功解决方案的人工神经网络可以有效地用于评估和预测银行业危机。

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